Journal of Pathology Informatics (Jan 2020)

EpithNet: Deep regression for epithelium segmentation in cervical histology images

  • Sudhir Sornapudi,
  • Jason Hagerty,
  • R Joe Stanley,
  • William V Stoecker,
  • Rodney Long,
  • Sameer Antani,
  • George Thoma,
  • Rosemary Zuna,
  • Shellaine R Frazier

DOI
https://doi.org/10.4103/jpi.jpi_53_19
Journal volume & issue
Vol. 11, no. 1
pp. 10 – 10

Abstract

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Background: Automated pathology techniques for detecting cervical cancer at the premalignant stage have advantages for women in areas with limited medical resources. Methods: This article presents EpithNet, a deep learning approach for the critical step of automated epithelium segmentation in digitized cervical histology images. EpithNet employs three regression networks of varying dimensions of image input blocks (patches) surrounding a given pixel, with all blocks at a fixed resolution, using varying network depth. Results: The proposed model was evaluated on 311 digitized histology epithelial images and the results indicate that the technique maximizes region-based information to improve pixel-wise probability estimates. EpithNet-mc model, formed by intermediate concatenation of the convolutional layers of the three models, was observed to achieve 94% Jaccard index (intersection over union) which is 26.4% higher than the benchmark model. Conclusions: EpithNet yields better epithelial segmentation results than state-of-the-art benchmark methods.

Keywords